Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Petra Zürbig is active.

Publication


Featured researches published by Petra Zürbig.


Molecular & Cellular Proteomics | 2010

Naturally occurring human urinary peptides for use in diagnosis of chronic kidney disease

David M. Good; Petra Zürbig; Àngel Argilés; Hartwig W. Bauer; Georg Behrens; Joshua J. Coon; Mohammed Dakna; Stéphane Decramer; Christian Delles; Anna F. Dominiczak; Jochen H. H. Ehrich; Frank Eitner; Danilo Fliser; Moritz Frommberger; Arnold Ganser; Mark A. Girolami; Igor Golovko; Wilfried Gwinner; Marion Haubitz; Stefan Herget-Rosenthal; Joachim Jankowski; Holger Jahn; George Jerums; Bruce A. Julian; Markus Kellmann; Volker Kliem; Walter Kolch; Andrzej S. Krolewski; Mario Luppi; Ziad A. Massy

Because of its availability, ease of collection, and correlation with physiology and pathology, urine is an attractive source for clinical proteomics/peptidomics. However, the lack of comparable data sets from large cohorts has greatly hindered the development of clinical proteomics. Here, we report the establishment of a reproducible, high resolution method for peptidome analysis of naturally occurring human urinary peptides and proteins, ranging from 800 to 17,000 Da, using samples from 3,600 individuals analyzed by capillary electrophoresis coupled to MS. All processed data were deposited in an Structured Query Language (SQL) database. This database currently contains 5,010 relevant unique urinary peptides that serve as a pool of potential classifiers for diagnosis and monitoring of various diseases. As an example, by using this source of information, we were able to define urinary peptide biomarkers for chronic kidney diseases, allowing diagnosis of these diseases with high accuracy. Application of the chronic kidney disease-specific biomarker set to an independent test cohort in the subsequent replication phase resulted in 85.5% sensitivity and 100% specificity. These results indicate the potential usefulness of capillary electrophoresis coupled to MS for clinical applications in the analysis of naturally occurring urinary peptides.


Nature Medicine | 2006

Predicting the clinical outcome of congenital unilateral ureteropelvic junction obstruction in newborn by urinary proteome analysis

Stéphane Decramer; Stefan Wittke; Harald Mischak; Petra Zürbig; Michael Walden; François Bouissou; Jean-Loup Bascands; Joost P. Schanstra

We analyzed urinary polypeptides from individuals with neonatal ureteropelvic junction (UPJ) obstruction to predict which individuals with this condition will evolve toward obstruction that needs surgical correction. We identified polypeptides that enabled diagnosis of the severity of obstruction and validated these biomarkers in urine collected in a prospective blinded study. Using these noninvasive biomarkers, we were able to predict, several months in advance and with 94% precision, the clinical evolution of neonates with UPJ obstruction.


Journal of The American Society of Nephrology | 2008

Urinary Proteomics in Diabetes and CKD

Kasper Rossing; Harald Mischak; Mohammed Dakna; Petra Zürbig; Jan Novak; Bruce A. Julian; David M. Good; Joshua J. Coon; Lise Tarnow; Peter Rossing

Urinary biomarkers for diabetes, diabetic nephropathy, and nondiabetic proteinuric renal diseases were sought. For 305 individuals, biomarkers were defined and validated in blinded data sets using high-resolution capillary electrophoresis coupled with electrospray-ionization mass spectrometry. A panel of 40 biomarkers distinguished patients with diabetes from healthy individuals with 89% sensitivity and 91% specificity. Among patients with diabetes, 102 urinary biomarkers differed significantly between patients with normoalbuminuria and nephropathy, and a model that included 65 of these correctly identified diabetic nephropathy with 97% sensitivity and specificity. Furthermore, this panel of biomarkers identified patients who had microalbuminuria and diabetes and progressed toward overt diabetic nephropathy over 3 yr. Differentiation between diabetic nephropathy and other chronic renal diseases reached 81% sensitivity and 91% specificity. Many of the biomarkers were fragments of collagen type I, and quantities were reduced in patients with diabetes or diabetic nephropathy. In conclusion, this study shows that analysis of the urinary proteome may allow early detection of diabetic nephropathy and may provide prognostic information.


Molecular & Cellular Proteomics | 2008

Urinary proteomic biomarkers in coronary artery disease

Lukas Zimmerli; Eric Schiffer; Petra Zürbig; David M. Good; Markus Kellmann; Laetitia Mouls; Andrew R. Pitt; Joshua J. Coon; Roland E. Schmieder; Karlheinz Peter; Harald Mischak; Walter Kolch; Christian Delles; Anna F. Dominiczak

Urinary proteomics is emerging as a powerful non-invasive tool for diagnosis and monitoring of variety of human diseases. We tested whether signatures of urinary polypeptides can contribute to the existing biomarkers for coronary artery disease (CAD). We examined a total of 359 urine samples from 88 patients with severe CAD and 282 controls. Spot urine was analyzed using capillary electrophoresis on-line coupled to ESI-TOF-MS enabling characterization of more than 1000 polypeptides per sample. In a first step a “training set” for biomarker definition was created. Multiple biomarker patterns clearly distinguished healthy controls from CAD patients, and we extracted 15 peptides that define a characteristic CAD signature panel. In a second step, the ability of the CAD-specific panel to predict the presence of CAD was evaluated in a blinded study using a “test set.” The signature panel showed sensitivity of 98% (95% confidence interval, 88.7–99.6) and 83% specificity (95% confidence interval, 51.6–97.4). Furthermore the peptide pattern significantly changed toward the healthy signature correlating with the level of physical activity after therapeutic intervention. Our results show that urinary proteomics can identify CAD patients with high confidence and might also play a role in monitoring the effects of therapeutic interventions. The workflow is amenable to clinical routine testing suggesting that non-invasive proteomics analysis can become a valuable addition to other biomarkers used in cardiovascular risk assessment.


Diabetes | 2012

Urinary Proteomics for Early Diagnosis in Diabetic Nephropathy

Petra Zürbig; George Jerums; Peter Hovind; Richard J. MacIsaac; Harald Mischak; Stine E. Nielsen; Sianna Panagiotopoulos; Frederik Persson; Peter Rossing

Diabetic nephropathy (DN) is a progressive kidney disease, a well-known complication of long-standing diabetes. DN is the most frequent reason for dialysis in many Western countries. Early detection may enable development of specific drugs and early initiation of therapy, thereby postponing/preventing the need for renal replacement therapy. We evaluated urinary proteome analysis as a tool for prediction of DN. Capillary electrophoresis–coupled mass spectrometry was used to profile the low–molecular weight proteome in urine. We examined urine samples from a longitudinal cohort of type 1 and 2 diabetic patients (n = 35) using a previously generated chronic kidney disease (CKD) biomarker classifier to assess peptides of collected urines for signs of DN. The application of this classifier to samples of normoalbuminuric subjects up to 5 years prior to development of macroalbuminuria enabled early detection of subsequent progression to macroalbuminuria (area under the curve [AUC] 0.93) compared with urinary albumin routinely used to determine the diagnosis (AUC 0.67). Statistical analysis of each urinary CKD biomarker depicted its regulation with respect to diagnosis of DN over time. Collagen fragments were prominent biomarkers 3–5 years before onset of macroalbuminuria. Before albumin excretion starts to increase, there is a decrease in collagen fragments. Urinary proteomics enables noninvasive assessment of DN risk at an early stage via determination of specific collagen fragments.


Proceedings of the National Academy of Sciences of the United States of America | 2008

Proteins induced by telomere dysfunction and DNA damage represent biomarkers of human aging and disease.

Hong Jiang; Eric Schiffer; Zhangfa Song; Jianwei Wang; Petra Zürbig; Kathrin Thedieck; Suzette Moes; Heike Bantel; Nadja Saal; Justyna Jantos; Meiken Brecht; Paul Jenö; Michael N. Hall; Klaus Hager; Michael P. Manns; Hartmut Hecker; Arnold Ganser; Konstanze Döhner; Andrzej Bartke; Christoph Meissner; Harald Mischak; Zhenyu Ju; K. Lenhard Rudolph

Telomere dysfunction limits the proliferative capacity of human cells by activation of DNA damage responses, inducing senescence or apoptosis. In humans, telomere shortening occurs in the vast majority of tissues during aging, and telomere shortening is accelerated in chronic diseases that increase the rate of cell turnover. Yet, the functional role of telomere dysfunction and DNA damage in human aging and diseases remains under debate. Here, we identified marker proteins (i.e., CRAMP, stathmin, EF-1α, and chitinase) that are secreted from telomere-dysfunctional bone-marrow cells of late generation telomerase knockout mice (G4mTerc−/−). The expression levels of these proteins increase in blood and in various tissues of aging G4mTerc−/− mice but not in aging mice with long telomere reserves. Orthologs of these proteins are up-regulated in late-passage presenescent human fibroblasts and in early passage human cells in response to γ-irradiation. The study shows that the expression level of these marker proteins increases in the blood plasma of aging humans and shows a further increase in geriatric patients with aging-associated diseases. Moreover, there was a significant increase in the expression of the biomarkers in the blood plasma of patients with chronic diseases that are associated with increased rates of cell turnover and telomere shortening, such as cirrhosis and myelodysplastic syndromes (MDS). Analysis of blinded test samples validated the effectiveness of the biomarkers to discriminate between young and old, and between disease groups (MDS, cirrhosis) and healthy controls. These results support the concept that telomere dysfunction and DNA damage are interconnected pathways that are activated during human aging and disease.


Hepatology | 2011

Bile proteomic profiles differentiate cholangiocarcinoma from primary sclerosing cholangitis and choledocholithiasis

Tim O. Lankisch; Jochen Metzger; Ahmed A. Negm; Katja Voβkuhl; Eric Schiffer; Justyna Siwy; Tobias J. Weismüller; Andrea S. Schneider; Kathrin Thedieck; Ralf Baumeister; Petra Zürbig; Eva M. Weissinger; Michael P. Manns; Harald Mischak; Jochen Wedemeyer

Early detection of malignant biliary tract diseases, especially cholangiocarcinoma (CC) in patients with primary sclerosing cholangitis (PSC), is very difficult and often comes too late to give the patient a therapeutic benefit. We hypothesize that bile proteomic analysis distinguishes CC from nonmalignant lesions. We used capillary electrophoresis mass spectrometry (CE‐MS) to identify disease‐specific peptide patterns in patients with choledocholithiasis (n = 16), PSC (n = 18), and CC (n = 16) in a training set. A model for differentiation of choledocholithiasis from PSC and CC (PSC/CC model) and another model distinguishing CC from PSC (CC model) were subsequently validated in independent cohorts (choledocholithiasis [n = 14], PSC [n = 18] and CC [n = 25]). Peptides were characterized by sequencing. Application of the PSC/CC model in the independent test cohort resulted in correct exclusion of 12/14 bile samples from patients with choledocholithiasis and identification of 40/43 patients with PSC or CC (86% specificity, 93% sensitivity). The corresponding receiver operating characteristic (ROC) analysis revealed an area under the curve (AUC) of 0.93 (95% confidence interval [CI]: 0.82‐0.98, P = 0.0001). The CC model succeeded in an accurate detection of 14/18 bile samples from patients with PSC and 21/25 samples with CC (78% specificity, 84% sensitivity) in the independent cohort, resulting in an AUC value of 0.87 (95% CI: 0.73‐0.95, P = 0.0001) in ROC analysis. Eight out of 10 samples of patients with CC complicating PSC were identified. Conclusion: Bile proteomic analysis discriminates benign conditions from CC accurately. This method may become a diagnostic tool in future as it offers a new possibility to diagnose malignant bile duct disease and thus enables efficient therapy particularly in patients with PSC. (HEPATOLOGY 2010;)


Proteomics Clinical Applications | 2010

Comprehensive human urine standards for comparability and standardization in clinical proteome analysis

Harald Mischak; Walter Kolch; Michalis Aivaliotis; David Bouyssié; Magali Court; Hassan Dihazi; Gry H. Dihazi; Julia Franke; Jérôme Garin; Anne Gonzalez de Peredo; Alexander Iphöfer; Lothar Jänsch; Chrystelle Lacroix; Manousos Makridakis; Christophe Masselon; Jochen Metzger; Bernard Monsarrat; Michal Mrug; Martin Norling; Jan Novak; Andreas Pich; Andrew R. Pitt; Erik Bongcam-Rudloff; Justyna Siwy; Hitoshi Suzuki; Visith Thongboonkerd; Li-Shun Wang; Jerome Zoidakis; Petra Zürbig; Joost P. Schanstra

Purpose: Urine proteomics is emerging as a powerful tool for biomarker discovery. The purpose of this study is the development of a well‐characterized “real life” sample that can be used as reference standard in urine clinical proteomics studies.


Hypertension | 2011

Urinary Proteomics for Prediction of Preeclampsia

David Carty; Justyna Siwy; Je Brennand; Petra Zürbig; William Mullen; Julia Franke; James McCulloch; Robyn A. North; Lucy Chappell; Harald Mischak; Lucilla Poston; Anna F. Dominiczak; Christian Delles

Preeclampsia is a major determinant of fetal and maternal morbidity and mortality. We used a proteomic strategy to identify urinary biomarkers that predict preeclampsia before the onset of disease. We prospectively collected urine samples from women throughout pregnancy. Samples from gestational weeks 12 to 16 (n=45), 20 (n=50), and 28 (n=18) from women who subsequently had preeclampsia develop were matched to controls (n=86, n=49, and n=17, respectively). We performed capillary electrophoresis online coupled to micro-time-of-flight mass spectrometry. Disease-specific peptide patterns were generated using support vector machine-based software. Candidate biomarkers were sequenced by liquid chromatography-tandem mass spectrometry. From comparison with nonpregnant controls, we defined a panel of 284 pregnancy-specific proteomic biomarkers. Subsequently, we developed a model of 50 biomarkers from specimens obtained at week 28 that was associated with future preeclampsia (classification factor in cases, 1.032±0.411 vs controls, −1.038±0.432; P<0.001). Classification factor increased markedly from week 12 to 16 to 28 in women who subsequently had preeclampsia develop (n=16; from −0.392±0.383 to 1.070±0.383; P<0.001) and decreased slightly in controls (n=16; from −0.647±0.437 to −1.024±0.433; P=0.043). Among the biomarkers are fibrinogen alpha chain, collagen alpha chain, and uromodulin fragments. The markers appear to predict preeclampsia at gestational week 28 with good confidence but not reliably at earlier time points (weeks 12–16 and 20). After prospective validation in other cohorts, these markers may contribute to better prediction, monitoring, and accurate diagnosis of preeclampsia.


Journal of The American Society of Nephrology | 2015

Diagnosis and Prediction of CKD Progression by Assessment of Urinary Peptides

Joost P. Schanstra; Petra Zürbig; Alaa Alkhalaf; Àngel Argilés; Stephan J. L. Bakker; Joachim Beige; Henk J. G. Bilo; Christos Chatzikyrkou; Mohammed Dakna; Jesse Dawson; Christian Delles; Hermann Haller; Marion Haubitz; Holger Husi; Joachim Jankowski; George Jerums; Nanne Kleefstra; Tatiana Kuznetsova; David M. Maahs; Jan Menne; William Mullen; Alberto Ortiz; Frederik Persson; Peter Rossing; Piero Ruggenenti; Ivan Rychlik; Andreas L. Serra; Justyna Siwy; Janet K. Snell-Bergeon; Goce Spasovski

Progressive CKD is generally detected at a late stage by a sustained decline in eGFR and/or the presence of significant albuminuria. With the aim of early and improved risk stratification of patients with CKD, we studied urinary peptides in a large cross-sectional multicenter cohort of 1990 individuals, including 522 with follow-up data, using proteome analysis. We validated that a previously established multipeptide urinary biomarker classifier performed significantly better in detecting and predicting progression of CKD than the current clinical standard, urinary albumin. The classifier was also more sensitive for identifying patients with rapidly progressing CKD. Compared with the combination of baseline eGFR and albuminuria (area under the curve [AUC]=0.758), the addition of the multipeptide biomarker classifier significantly improved CKD risk prediction (AUC=0.831) as assessed by the net reclassification index (0.303±-0.065; P<0.001) and integrated discrimination improvement (0.058±0.014; P<0.001). Correlation of individual urinary peptides with CKD stage and progression showed that the peptides that associated with CKD, irrespective of CKD stage or CKD progression, were either fragments of the major circulating proteins, suggesting failure of the glomerular filtration barrier sieving properties, or different collagen fragments, suggesting accumulation of intrarenal extracellular matrix. Furthermore, protein fragments associated with progression of CKD originated mostly from proteins related to inflammation and tissue repair. Results of this study suggest that urinary proteome analysis might significantly improve the current state of the art of CKD detection and outcome prediction and that identification of the urinary peptides allows insight into various ongoing pathophysiologic processes in CKD.

Collaboration


Dive into the Petra Zürbig's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Mohammed Dakna

Hong Kong University of Science and Technology

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Peter Rossing

University of Copenhagen

View shared research outputs
Top Co-Authors

Avatar

Antonia Vlahou

Plymouth State University

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge